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Deconfounding with Networked Observational Data in a Dynamic Environment

Jing Ma, Ruocheng Guo, Chen Chen, Aidong Zhang, Jundong Li

202130 citationsDOI

Abstract

One fundamental problem in causal inference is to learn the individual treatment effects (ITE) -- assessing the causal effects of a certain treatment (e.g., prescription of medicine) on an important outcome (e.g., cure of a disease) for each data instance, but the effectiveness of most existing methods is often limited due to the existence of hidden confounders. Recent studies have shown that the auxiliary relational information among data can be utilized to mitigate the confounding bias. However, these works assume that the observational data and the relations among them are static, while in reality, both of them will continuously evolve over time and we refer such data as time-evolving networked observational data.

Topics & Concepts

Observational studyCausal inferenceConfoundingComputer scienceOutcome (game theory)InferenceData scienceMedical prescriptionData miningMachine learningArtificial intelligenceEconometricsMedicineStatisticsMathematicsPharmacologyMathematical economicsAdvanced Causal Inference TechniquesBayesian Modeling and Causal InferenceStatistical Methods and Inference